基于模型的自主入侵防御响应规划策略

Stefano Iannucci, S. Abdelwahed
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引用次数: 21

摘要

网络攻击的数量和复杂程度不断增加,使得系统管理员处理入侵检测系统(ids)产生的警报变得更加困难和容易出错。为了解决这一问题,最近提出了几种入侵响应系统(IRSs)。入侵防御系统通过对检测到的攻击提供自动响应来扩展入侵防御系统。这样的响应通常是通过静态的攻击-响应映射来选择的,或者通过定量地评估所有可用的响应,给出一组预定义的标准。在本文中,我们介绍了一个基于马尔可夫决策过程(MDP)框架的基于概率模型的IRS。与大多数现有的入侵响应方法相比,所提出的入侵响应方法有效地捕获了被防御系统和攻击者的动态,并能够组成原子响应动作来规划最优的多目标长期响应策略,以保护系统。我们通过表明长期响应计划总是优于短期计划来评估所提议的IRS的有效性,并且我们进行了彻底的性能评估,以表明所提议的IRS可以用于在运行时保护大型分布式系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-Based Response Planning Strategies for Autonomic Intrusion Protection
The continuous increase in the quantity and sophistication of cyberattacks is making it more difficult and error prone for system administrators to handle the alerts generated by intrusion detection systems (IDSs). To deal with this problem, several intrusion response systems (IRSs) have been proposed lately. IRSs extend the IDSs by providing an automatic response to the detected attack. Such a response is usually selected either with a static attack-response mapping or by quantitatively evaluating all available responses, given a set of predefined criteria. In this article, we introduce a probabilistic model-based IRS built on the Markov decision process (MDP) framework. In contrast to most existing approaches to intrusion response, the proposed IRS effectively captures the dynamics of both the defended system and the attacker and is able to compose atomic response actions to plan optimal multiobjective long-term response policies to protect the system. We evaluate the effectiveness of the proposed IRS by showing that long-term response planning always outperforms short-term planning, and we conduct a thorough performance assessment to show that the proposed IRS can be adopted to protect large distributed systems at runtime.
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